# Subtraction over a list of sets

Given a list of sets:

``````allsets = [set([1, 2, 4]), set([4, 5, 6]), set([4, 5, 7])]
``````

What is a pythonic way to compute the corresponding list of sets of elements having no overlap with other sets?

``````only = [set([1, 2]), set([6]), set([7])]
``````

Is there a way to do this with a list comprehension?

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– J.F. Sebastian Jan 30 at 7:34

To avoid quadratic runtime, you'd want to make an initial pass to figure out which elements appear in more than one set:

``````import itertools
import collections
element_counts = collections.Counter(itertools.chain.from_iterable(allsets))
``````

Then you can simply make a list of sets retaining all elements that only appear once:

``````nondupes = [{elem for elem in original if element_counts[elem] == 1}
for original in allsets]
``````

Alternatively, instead of constructing `nondupes` from `element_counts` directly, we can make an additional pass to construct a set of all elements that appear in exactly one input. This requires an additional statement, but it allows us to take advantage of the `&` operator for set intersection to make the list comprehension shorter and more efficient:

``````element_counts = collections.Counter(itertools.chain.from_iterable(allsets))
all_uniques = {elem for elem, count in element_counts.items() if count == 1}
#                                                     ^ viewitems() in Python 2.7
nondupes = [original & all_uniques for original in allsets]
``````

Timing seems to indicate that using an `all_uniques` set produces a substantial speedup for the overall duplicate-elimination process. It's up to about a 3.5x speedup on Python 3 for heavily-duplicate input sets, though only about a 30% speedup for the overall duplicate-elimination process on Python 2 due to more of the runtime being dominated by constructing the Counter. This speedup is fairly substantial, though not nearly as important as avoiding quadratic runtime by using `element_counts` in the first place. If you're on Python 2 and this code is speed-critical, you'd want to use an ordinary `dict` or a `collections.defaultdict` instead of a `Counter`.

Another way would be to construct a `dupes` set from `element_counts` and use `original - dupes` instead of `original & all_uniques` in the list comprehension, as suggested by munk. Whether this performs better or worse than using an `all_uniques` set and `&` would depend on the degree of duplication in your input and what Python version you're on, but it doesn't seem to make much of a difference either way.

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Certainly a better way. Some links for the OP 1. `chain.from_iterable` 2. `collections.Counter` – Bhargav Rao Jan 29 at 20:36
yep, this wins. +1 – timgeb Jan 29 at 20:37
Literal syntax could be a little nicer with [{elem for elem in original...}] – munk Jan 29 at 20:37
@munk: Oh, right. I keep forgetting to use set literals and set comprehensions. – user2357112 Jan 29 at 20:39
Intersecting with unique elements is about 6x faster than subtracting duplicates on my real world data set. In my dataset, the unique elements are rare and the duplicates are plentiful. – Steve Feb 1 at 14:25

Yes it can be done but is hardly pythonic

``````>>> [(i-set.union(*[j for j in allsets if j!= i])) for i in allsets]
[set([1, 2]), set([6]), set([7])]
``````

Some reference on sets can be found in the documentation. The `*` operator is called unpacking operator.

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eww agreed. Avoid this like the plague. Prefer some verbose for loops (but great work Bhargav!) – Adam Smith Jan 29 at 20:30
You don't need the inner list – Padraic Cunningham Jan 29 at 20:33
@PadraicCunningham You'd prefer a genexp there? – Bhargav Rao Jan 29 at 20:34

A slightly different solution using Counter and comprehensions, to take advantage of the `-` operator for set difference.

``````from itertools import chain
from collections import Counter

allsets = [{1, 2, 4}, {4, 5, 6}, {4, 5, 7}]
element_counts = Counter(chain.from_iterable(allsets))

dupes = {key for key in element_counts
if element_counts[key] > 1}

only = [s - dupes for s in allsets]
``````
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I actually thought about that after I posted my original solution, though I used `&` and made a `unique_elements` set instead of a `dupes` set. Timing showed `&` to be about 30% faster than running a Python-level set comprehension every time. Whether `&` or `-` performs better probably depends on the degree of element duplication and what Python version you're on. – user2357112 Jan 29 at 21:03
Selecting this solution as the best answer because 1) it is very readable, 2) 15%-30% faster than the user2357112 solution on my real world data – Steve Feb 1 at 13:54
Very nice and readable solution. I originally selected this as the best answer based on readability and speed. Later changed to user2357112's answer, which upon further testing is significantly faster. – Steve Feb 1 at 14:10

Another solution with `itertools.chain`:

``````>>> from itertools import chain
>>> [x - set(chain(*(y for y in allsets if y!=x))) for x in allsets]
[set([1, 2]), set([6]), set([7])]
``````

Also doable without the unpacking and using `chain.from_iterable` instead.

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